Review of Poultry Monitoring using Computer Vision
Main Article Content
Abstract
Poultry farming is an important unit in global agronomy, contributing immensely to the production of meat and eggs. Safeguarding the health and welfare of poultry is vital for ethical and financial reasons. In recent years, computer vision awareness has gained prominence as a powerful tool for poultry monitoring. This review paper provides an outline of the application of computer vision in poultry monitoring. We explore the different phases of this technology, with real-time image acquisition, object recognition, and behavior analysis. By connecting cameras and sophisticated algorithms, a computer vision system can distinguish unusual behavior, track poultry activities and observe its environmental conditions. Furthermore, this study discovers the benefits of computer vision in poultry farming, including early detection of disease, better production efficiency and improved animal welfare. In conclusion, the application of computer vision in monitoring poultry holds immense potential for the industry; by providing a corridor to a more sustainable and ethical poultry farming system with increased productivity. This paper equally discusses recent developments, challenges, forthcoming prospects in the field and academic research gaps identified.
Downloads
Article Details
References
Ananya, M. D. (2022). IOT Based Smart Poultry Farming. 5(2), 1–6.
Bao, Y., Lu, H., Zhao, Q., Yang, Z., & Xu, W. (2021). Detection system of dead and sick chickens in large scale farms based on artificial intelligence. 18(May), 6117–6135. https://doi.org/10.3934/mbe.2021306
Bumanis, N., Arhipova, I., Paura, L., Vitols, G., & Jankovska, L. (2022). ScienceDirect ScienceDirect Data Conceptual Model for Smart Poultry Farm Management Data Conceptual Model for Smart Poultry Farm Management System System. Procedia Computer Science, 200(2019), 517–526. https://doi.org/10.1016/j.procs.2022.01.249
Čakić, S. (2022). Developing Object Detection Models for Camera Applications in Smart Poultry Farms.
Chuang, C., Chiang, C., Chen, Y., Lin, C., & Tsai, Y. (2021). Goose Surface Temperature Monitoring System Based on Deep Learning Using Visible and Infrared Thermal Image Integration. IEEE Access, 9, 131203–131213. https://doi.org/10.1109/ACCESS.2021.3113509
Eijk, J. A. J. Van Der, Guzhva, O., Voss, A., Möller, M., Giersberg, M. F., Jacobs, L., & Jong, I. C. De. (2022). Seeing is caring – automated assessment of resource use of broilers with computer vision techniques. August, 1–13. https://doi.org/10.3389/fanim.2022.945534
Fang, C., Zhang, T., Zheng, H., Huang, J., & Cuan, K. (2020). Pose estimation and behavior classification of broiler chickens based on deep neural networks. Computers and Electronics in Agriculture, October, 105863. https://doi.org/10.1016/j.compag.2020.105863
He, P., Chen, Z., Yu, H., Hayat, K., He, Y., Pan, J., & Lin, H. (2022). applied sciences Research Progress in the Early Warning of Chicken Diseases by Monitoring Clinical Symptoms.
Iyer, R. V., Ringe, P. S., & Bhensdadiya, K. P. (2021). Comparison of YOLOv3 , YOLOv5s and MobileNet-SSD V2 for Real-Time Mask Comparison of YOLOv3 , YOLOv5s and MobileNet-SSD V2 for Real-Time Mask Detection. July.
Journal, I. (2020). IRJET- A POULTRY FARM CONTROL SYSTEM. IRJET.
Kayabaşi, A. (2022). Automatic Classification of Healthy and Sick Broilers in Terms of Avian Influenza by Using Neural Networks Sağlıklı ve Hasta Etlik Piliçlerin Kuş Gribi Açısından Sinir Ağları Kullanarak Otomatik Sınıflandırılması. 4(2), 212–226.
Li, G., Hui, X., Chen, Z., Chesser, G. D., & Zhao, Y. (2021). Development and evaluation of a method to detect broilers continuously walking around feeder as an indication of restricted feeding behaviors. Computers and Electronics in Agriculture, 181(September 2020), 105982. https://doi.org/10.1016/j.compag.2020.105982
Machuve, D., Nwankwo, E., Mduma, N., & Mbelwa, J. (2018). Poultry diseases diagnostics models using deep learning. 2017.
Massari, J. M., Moura, D. J. De, Nääs, I. D. A., Pereira, D. F., & Branco, T. (2022). Computer-Vision-Based Indexes for Analyzing Broiler Response to Rearing Environment : A Proof of Concept.
Mathurabai, B., Maddali, V. P., Devineni, C., & Bhukya, I. (2022). Object Detetcion using SSD-MobileNet. 2668–2671.
Monitoring, A. O., Animals, O. F., Precision, B. Y., & Farming, L. (2004). Automatic on-line monitoring of animals by precision livestock farming. 51–54.
Neethirajan, S. (2022). Automated Tracking Systems for the Assessment of Farmed Poultry. Animal, 12, 232.
Niamat, T., Akhund, U., Snigdha, S. R., Reza, S., Newaz, N. T., Saifuzzaman, M., & Rashel, M. R. (2020). for Multi-purpose Smart Poultry Farm.
Okinda, C., Liu, L., Lu, M., Nyalala, I., Muneri, C., & Wang, J. (2019). A machine vision system for early detection and prediction of sick birds : a broiler chicken model.
Pereira, D. F., Miyamoto, B. C. B., Maia, G. D. N., Sales, G. T., Magalhães, M. M., & Gates, R. S. (2013). Machine vision to identify broiler breeder behavior. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 99, 194–199. https://doi.org/10.1016/j.compag.2013.09.012
Publishers, W. A. (2022). 75 . Do we improve any aspects of animal welfare by implementing Computer Vision in livestock farming ? 481–486. https://doi.org/10.3920/978-90-8686-939-8
Rushen, J., Chapinal, N., & Passillé, A. M. De. (2012). Automated monitoring of behavioural-based animal welfare indicators. 339–350. https://doi.org/10.7120/09627286.21.3.339
Shetty, A. K., Saha, I., Sanghvi, R. M., Save, S. A., & Patel, Y. J. (2021). A Review: Object Detection Models. 2021 6th International Conference for Convergence in Technology, I2CT 2021, 1–8. https://doi.org/10.1109/I2CT51068.2021.9417895
Sultana, F., Sufian, A., & Dutta, P. (2020). A review of object detection models based on convolutional neural network. Advances in Intelligent Systems and Computing, 1157, 1–16. https://doi.org/10.1007/978-981-15-4288-6_1
Tran, H., & Le, T. H. (2017). EAI Endorsed Transactions Real Time Burning Image Classification Using Support Vector Machine. October 2018. https://doi.org/10.4108/eai.6-7-2017.152760
Volkmann, N., Zelenka, C., Devaraju, A. M., Brünger, J., Stracke, J., Spindler, B., Kemper, N., & Koch, R. (2022). Keypoint Detection for Injury Identification during Turkey Husbandry Using Neural Networks.
Zhuang, X., Bi, M., Guo, J., Wu, S., & Zhang, T. (2018). Development of an early warning algorithm to detect sick broilers. Computers and Electronics in Agriculture, 144(July 2017), 102–113. https://doi.org/10.1016/j.compag.2017.11.032
Zhuang, X., & Zhang, T. (2019). ScienceDirect Detection of sick broilers by digital image processing and deep learning. Biosystems Engineering, 179, 106–116. https://doi.org/10.1016/j.biosystemseng.2019.01.003